Li Guoshi, Yap Pew-Thian
Department of Radiology, University of North Carolina, Chapel Hill, NC, United States.
Biomedical Research Imaging Center, University of North Carolina, Chapel Hill, NC, United States.
Front Hum Neurosci. 2022 Aug 17;16:940842. doi: 10.3389/fnhum.2022.940842. eCollection 2022.
As a newly emerging field, connectomics has greatly advanced our understanding of the wiring diagram and organizational features of the human brain. Generative modeling-based connectome analysis, in particular, plays a vital role in deciphering the neural mechanisms of cognitive functions in health and dysfunction in diseases. Here we review the foundation and development of major generative modeling approaches for functional magnetic resonance imaging (fMRI) and survey their applications to cognitive or clinical neuroscience problems. We argue that conventional structural and functional connectivity (FC) analysis alone is not sufficient to reveal the complex circuit interactions underlying observed neuroimaging data and should be supplemented with generative modeling-based effective connectivity and simulation, a fruitful practice that we term "mechanistic connectome." The transformation from descriptive connectome to mechanistic connectome will open up promising avenues to gain mechanistic insights into the delicate operating principles of the human brain and their potential impairments in diseases, which facilitates the development of effective personalized treatments to curb neurological and psychiatric disorders.
作为一个新兴领域,连接组学极大地增进了我们对人类大脑布线图和组织特征的理解。特别是基于生成模型的连接组分析,在解读健康状态下认知功能的神经机制以及疾病状态下的功能障碍方面发挥着至关重要的作用。在此,我们回顾了用于功能磁共振成像(fMRI)的主要生成模型方法的基础和发展,并审视它们在认知或临床神经科学问题中的应用。我们认为,仅靠传统的结构和功能连接(FC)分析不足以揭示观察到的神经影像数据背后复杂的电路相互作用,而应以基于生成模型的有效连接和模拟加以补充,我们将这种卓有成效的做法称为“机制性连接组”。从描述性连接组向机制性连接组的转变将开辟出有前景的途径,以深入了解人类大脑精细的运作原理及其在疾病中的潜在损伤机制,这有助于开发有效的个性化治疗方法来控制神经和精神疾病。